Optimal stock portfolio selection using the combined salp swarm algorithm and sine cosine algorithm and forward neural networks
Subject Areas : business managementSeyed Ali Hoseini 1 , َAli Esmaeilzadeh Maghari 2 , Azita Jahanshad 3
1 - Department of Accounting, Central Tehran Branch, Islamic Azad University, Tehran, Iran
2 - Department of Accounting, Central Tehran Branch, Islamic Azad University, Tehran, Iran
3 - Department of Accounting, Central Tehran Branch, Islamic Azad University, Tehran, Iran
Keywords: Optimal Stock Portfolio, combined salp swarm algorithm, sine cosine algorithm, forward neural networks,
Abstract :
Optimal stock portfolio selection is an optimization problem that can be solved by meta-heuristic algorithms. The search power of the meta-innovation algorithm is directly related to the accuracy of selecting the best stocks in the portfolio portfolio. salp swarm algorithm is one of the new meta-heuristic algorithms that has had good results in selecting the optimal stock portfolio. In this research, a new solution to strengthen the search power in salp swarm algorithm using cosine sine algorithm is presented. Research shows that all-in-one is one of the best ways to choose the best portfolio, but it is also important to consider the future as well. In the first twenty years of the stock market, from the first fifty years of 1398. In this research, using the forward neural network, the future final price of stocks is predicted and by new method for of cosine sine salp swarm algorithm is used to select the optimal stock portfolio. The results indicate that the model presented in this article, compared to traditional methods and market index, provides a higher yield for investors.
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